## Introduction 6G network management is a complex task that requires optimizing various factors, including scalability and efficiency. To tackle this challenge, researchers have developed a new framework called QI MARL. ## How QI MARL works QI MARL is an approach that combines classical reinforcement learning with quantum physics. It uses variational quantum circuits (VQCs) as the base structure and the Quantum Approximate Optimization Algorithm (QAOA) to optimize the solution. ## Features of QI MARL QI MARL is designed to tackle 6G network management challenges efficiently. It uses a combination of reinforcement learning and quantum physics techniques to optimize scalability and efficiency. ## Conclusion QI MARL represents a significant step forward in 6G network management. Its ability to combine classical reinforcement learning with quantum physics promises significant improvements in scalability and efficiency. ## Implementation and recognition All source code is available on GitHub to ensure reproducibility of the results.